[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
Skip header Section
Inductive Logic Programming: Techniques and ApplicationsMarch 1993
Publisher:
  • Routledge
  • Subs. of International Thomson Org. 29 West 35th Sreet New York, NY
  • United States
ISBN:978-0-13-457870-5
Published:01 March 1993
Pages:
293
Skip Bibliometrics Section
Reflects downloads up to 13 Dec 2024Bibliometrics
Abstract

No abstract available.

Cited By

  1. Trouillon T, Gaussier É, Dance C and Bouchard G (2019). On inductive abilities of latent factor models for relational learning, Journal of Artificial Intelligence Research, 64:1, (21-53), Online publication date: 1-Jan-2019.
  2. Lima R, Espinasse B and Freitas F (2018). OntoILPER, Knowledge and Information Systems, 56:1, (223-255), Online publication date: 1-Jul-2018.
  3. Goswami A and Kumar A (2017). Challenges in the Analysis of Online Social Networks, Wireless Personal Communications: An International Journal, 97:3, (4015-4061), Online publication date: 1-Dec-2017.
  4. Jiménez P and Corchuelo R (2016). Roller, Knowledge and Information Systems, 49:1, (197-241), Online publication date: 1-Oct-2016.
  5. ACM
    Domingos P, Lowd D, Kok S, Nath A, Poon H, Richardson M and Singla P Unifying Logical and Statistical AI Proceedings of the 31st Annual ACM/IEEE Symposium on Logic in Computer Science, (1-11)
  6. França M, D'Avila Garcez A and Zaverucha G Relational knowledge extraction from neural networks Proceedings of the 2015th International Conference on Cognitive Computation: Integrating Neural and Symbolic Approaches - Volume 1583, (146-154)
  7. Ontañón S and Meseguer P (2015). Speeding up operations on feature terms using constraint programming and variable symmetry, Artificial Intelligence, 220:C, (104-120), Online publication date: 1-Mar-2015.
  8. Zeng Q, Patel J and Page D (2014). QuickFOIL, Proceedings of the VLDB Endowment, 8:3, (197-208), Online publication date: 1-Nov-2014.
  9. Appice A, Ceci M and Malerba D (2014). Multi-Relational Model Tree Induction Tightly-Coupled with a Relational Database, Fundamenta Informaticae, 129:3, (193-224), Online publication date: 1-Jul-2014.
  10. Lima R, Espinasse B, Oliveira H, Ferreira R, Cabral L, Filho D, Freitas F and Gadelha R An Inductive Logic Programming-Based Approach for Ontology Population from the Web Proceedings of the 24th International Conference on Database and Expert Systems Applications - Volume 8055, (319-326)
  11. Ahlgren J and Yuen S A Constraint Satisfaction Approach to Tractable Theory Induction Revised Selected Papers of the 7th International Conference on Learning and Intelligent Optimization - Volume 7997, (24-29)
  12. Csajbók Z Approximation of sets based on partial covering Transactions on Rough Sets XVI, (144-220)
  13. Ontañón S and Meseguer P Feature Term Subsumption Using Constraint Programming with Basic Variable Symmetry Proceedings of the 18th International Conference on Principles and Practice of Constraint Programming - Volume 7514, (1004-1012)
  14. ACM
    Wong W, Liu W and Bennamoun M (2012). Ontology learning from text, ACM Computing Surveys, 44:4, (1-36), Online publication date: 1-Aug-2012.
  15. ACM
    Rinard M (2012). Example-driven program synthesis for end-user programming, Communications of the ACM, 55:8, (96-96), Online publication date: 1-Aug-2012.
  16. Raghavan S, Mooney R and Ku H Learning to "read between the lines" using Bayesian logic programs Proceedings of the 50th Annual Meeting of the Association for Computational Linguistics: Long Papers - Volume 1, (349-358)
  17. vanden Broucke S, De Weerdt J, Baesens B and Vanthienen J Improved artificial negative event generation to enhance process event logs Proceedings of the 24th international conference on Advanced Information Systems Engineering, (254-269)
  18. Henriques R and Antunes C An integrated approach for healthcare planning over multi-dimensional data using long-term prediction Proceedings of the First international conference on Health Information Science, (36-48)
  19. Ochoa-Luna J, Revoredo K and Cozman F Learning probabilistic description logics Proceedings of the 10th Mexican international conference on Advances in Artificial Intelligence - Volume Part I, (28-39)
  20. ACM
    Yu Y, Bandara A, Tun T and Nuseibeh B Towards learning to detect meaningful changes in software Proceedings of the International Workshop on Machine Learning Technologies in Software Engineering, (51-54)
  21. Zhang D and Lu M (2011). Inconsistency-Induced Learning for Perpetual Learners, International Journal of Software Science and Computational Intelligence, 3:4, (33-51), Online publication date: 1-Oct-2011.
  22. Manzano S, Ontañón S and Plaza E Amalgam-Based reuse for multiagent case-based reasoning Proceedings of the 19th international conference on Case-Based Reasoning Research and Development, (122-136)
  23. Ontañón S and Meseguer P Efficient operations in feature terms using constraint programming Proceedings of the 21st international conference on Inductive Logic Programming, (270-285)
  24. Corapi D, Sykes D, Inoue K and Russo A Probabilistic rule learning in nonmonotonic domains Proceedings of the 12th international conference on Computational logic in multi-agent systems, (243-258)
  25. Csajbók Z and Mihálydeák T General tool-based approximation framework based on partial approximation of sets Proceedings of the 13th international conference on Rough sets, fuzzy sets, data mining and granular computing, (52-59)
  26. ACM
    Getoor L and Mihalkova L Learning statistical models from relational data Proceedings of the 2011 ACM SIGMOD International Conference on Management of data, (1195-1198)
  27. Poole D Logic, probability and computation Proceedings of the 11th international conference on Logic programming and nonmonotonic reasoning, (1-9)
  28. Biba M, Ferilli S and Esposito F (2011). Boosting learning and inference in Markov logic through metaheuristics, Applied Intelligence, 34:2, (279-298), Online publication date: 1-Apr-2011.
  29. Zou M, Wang T, Li H and Yang D A general multi-relational classification approach using feature generation and selection Proceedings of the 6th international conference on Advanced data mining and applications - Volume Part II, (21-33)
  30. ACM
    Nassif H, Page D, Ayvaci M, Shavlik J and Burnside E Uncovering age-specific invasive and DCIS breast cancer rules using inductive logic programming Proceedings of the 1st ACM International Health Informatics Symposium, (76-82)
  31. Hońko P (2010). Similarity-Based Classification in Relational Databases, Fundamenta Informaticae, 101:3, (187-213), Online publication date: 1-Aug-2010.
  32. Tran A, Marsland S, Dietrich J, Guesgen H and Lyons P Use cases for abnormal behaviour detection in smart homes Proceedings of the Aging friendly technology for health and independence, and 8th international conference on Smart homes and health telematics, (144-151)
  33. Corapi D, De Vos M, Padget J, Russo A and Satoh K Norm refinement and design through inductive learning Proceedings of the 6th international conference on Coordination, organizations, institutions, and norms in agent systems, (77-94)
  34. Estruch V, Ferri C, Hernández-Orallo J and Ramírez-Quintana M An integrated distance for atoms Proceedings of the 10th international conference on Functional and Logic Programming, (150-164)
  35. ACM
    Gottlob G and Senellart P (2010). Schema mapping discovery from data instances, Journal of the ACM, 57:2, (1-37), Online publication date: 1-Jan-2010.
  36. Mbaye M and Krief F A network simulator for autonomic context-aware architecture Proceedings of the 3rd international conference on New technologies, mobility and security, (476-478)
  37. Trentin E and Di Iorio E (2009). Classification of graphical data made easy, Neurocomputing, 73:1-3, (204-212), Online publication date: 1-Dec-2009.
  38. Müller M Modalities, Relations, and Learning Proceedings of the 11th International Conference on Relational Methods in Computer Science and 6th International Conference on Applications of Kleene Algebra: Relations and Kleene Algebra in Computer Science, (260-275)
  39. Pereira L and Pinto A Adaptive reasoning for cooperative agents Proceedings of the 18th international conference on Applications of declarative programming and knowledge management, (102-116)
  40. Esposito F, Biba M and Ferilli S Intelligent text processing techniques for textual-profile gene characterization Proceedings of the 6th international conference on Computational intelligence methods for bioinformatics and biostatistics, (33-44)
  41. Ontañón S and Plaza E On Similarity Measures Based on a Refinement Lattice Proceedings of the 8th International Conference on Case-Based Reasoning Research and Development - Volume 5650, (240-255)
  42. Vanderlooy S, Sprinkhuizen-Kuyper I, Smirnov E and van den Herik H (2009). The ROC isometrics approach to construct reliable classifiers, Intelligent Data Analysis, 13:1, (3-37), Online publication date: 1-Jan-2009.
  43. Esposito F, Di Mauro N, Basile T and Ferilli S (2009). Multi-Dimensional Relational Sequence Mining, Fundamenta Informaticae, 89:1, (23-43), Online publication date: 1-Jan-2009.
  44. Domingos P, Lowd D, Kok S, Poon H, Richardson M and Singla P Just Add Weights Uncertainty Reasoning for the Semantic Web I, (1-25)
  45. Hońko P (2008). Description and classification of complex structured objects by applying similarity measures, International Journal of Approximate Reasoning, 49:3, (539-554), Online publication date: 1-Nov-2008.
  46. ACM
    Falcao A, Faria D and Ferreira A Peptide programs Proceedings of the 2nd international workshop on Data and text mining in bioinformatics, (37-44)
  47. Dietterich T, Domingos P, Getoor L, Muggleton S and Tadepalli P (2008). Structured machine learning, Machine Language, 73:1, (3-23), Online publication date: 1-Oct-2008.
  48. Wynkoop M and Dietterich T Learning MDP action models via discrete mixture trees Proceedings of the 2008th European Conference on Machine Learning and Knowledge Discovery in Databases - Volume Part II, (597-612)
  49. Biba M, Ferilli S and Esposito F Structure Learning of Markov Logic Networks through Iterated Local Search Proceedings of the 2008 conference on ECAI 2008: 18th European Conference on Artificial Intelligence, (361-365)
  50. Cimiano P, Hartfiel H and Rudolph S Intensional Question Answering Using ILP Proceedings of the 13th international conference on Natural Language and Information Systems: Applications of Natural Language to Information Systems, (151-162)
  51. Front Matter Proceedings of the 2008 conference on Ontology Learning and Population: Bridging the Gap between Text and Knowledge, (i-xvi)
  52. ACM
    Senellart P and Gottlob G On the complexity of deriving schema mappings from database instances Proceedings of the twenty-seventh ACM SIGMOD-SIGACT-SIGART symposium on Principles of database systems, (23-32)
  53. Esposito F, Di Mauro N, Basile T and Ferilli S (2008). Multi-Dimensional Relational Sequence Mining, Fundamenta Informaticae, 89:1, (23-43), Online publication date: 1-Jan-2008.
  54. Domingos P, Kok S, Lowd D, Poon H, Richardson M and Singla P Markov logic Probabilistic inductive logic programming, (92-117)
  55. Riccucci S, Carbonaro A and Casadei G Knowledge acquisition in intelligent tutoring system Proceedings of the artificial intelligence 6th Mexican international conference on Advances in artificial intelligence, (1195-1205)
  56. ACM
    Bridewell W, Borrett S and Todorovski L Extracting constraints for process modeling Proceedings of the 4th international conference on Knowledge capture, (87-94)
  57. Malerba D and Ceci M Learning to order Proceedings of the 3rd ECML/PKDD international conference on Mining complex data, (209-223)
  58. Malerba D and Ceci M Learning to order Proceedings of the Third International Conference on Mining Complex Data, (209-223)
  59. Pietraszek T (2007). Classification of intrusion detection alerts using abstaining classifiers, Intelligent Data Analysis, 11:3, (293-316), Online publication date: 1-Aug-2007.
  60. ACM
    Liu C and Pontelli E Nonmonotonic inductive logic programming by instance patterns Proceedings of the 9th ACM SIGPLAN international conference on Principles and practice of declarative programming, (187-196)
  61. ACM
    Mihalkova L and Mooney R Bottom-up learning of Markov logic network structure Proceedings of the 24th international conference on Machine learning, (625-632)
  62. Bridewell W and Todorovski L Learning declarative bias Proceedings of the 17th international conference on Inductive logic programming, (63-77)
  63. Pasula H, Zettlemoyer L and Kaelbling L (2007). Learning symbolic models of stochastic domains, Journal of Artificial Intelligence Research, 29:1, (309-352), Online publication date: 1-May-2007.
  64. Liu C and Pontelli E Inductive logic programming by instance patterns Proceedings of the 9th international conference on Practical Aspects of Declarative Languages, (230-244)
  65. Case J, Jain S, Reischuk R, Stephan F and Zeugmann T (2006). Learning a subclass of regular patterns in polynomial time, Theoretical Computer Science, 364:1, (115-131), Online publication date: 2-Nov-2006.
  66. Zeugmann T (2006). From learning in the limit to stochastic finite learning, Theoretical Computer Science, 364:1, (77-97), Online publication date: 2-Nov-2006.
  67. Džeroski S Towards a general framework for data mining Proceedings of the 5th international conference on Knowledge discovery in inductive databases, (259-300)
  68. DeJong G Toward robust real-world inference Proceedings of the 17th European conference on Machine Learning, (102-113)
  69. Džeroski S From inductive logic programming to relational data mining Proceedings of the 10th European conference on Logics in Artificial Intelligence, (1-14)
  70. Assche A, Vens C, Blockeel H and Džeroski S (2006). First order random forests, Machine Language, 64:1-3, (149-182), Online publication date: 1-Sep-2006.
  71. Yin X, Han J, Yang J and Yu P (2006). Efficient Classification across Multiple Database Relations, IEEE Transactions on Knowledge and Data Engineering, 18:6, (770-783), Online publication date: 1-Jun-2006.
  72. ACM
    Zuo Y and Panda B Information trustworthiness evaluation based on trust combination Proceedings of the 2006 ACM symposium on Applied computing, (1880-1885)
  73. Perlich C and Provost F (2006). Distribution-based aggregation for relational learning with identifier attributes, Machine Language, 62:1-2, (65-105), Online publication date: 1-Feb-2006.
  74. Železný F and Lavrač N (2006). Propositionalization-based relational subgroup discovery with RSD, Machine Language, 62:1-2, (33-63), Online publication date: 1-Feb-2006.
  75. Richardson M and Domingos P (2006). Markov logic networks, Machine Language, 62:1-2, (107-136), Online publication date: 1-Feb-2006.
  76. Luo D, Luo C and Zhang C A framework for relational link discovery Proceedings of the 18th Australian Joint conference on Advances in Artificial Intelligence, (1311-1314)
  77. ACM
    Getoor L and Diehl C (2005). Link mining, ACM SIGKDD Explorations Newsletter, 7:2, (3-12), Online publication date: 1-Dec-2005.
  78. Skubch H and Thielscher M Strategy learning for reasoning agents Proceedings of the 16th European conference on Machine Learning, (733-740)
  79. Lallouet A and Legtchenko A Two contributions of constraint programming to machine learning Proceedings of the 16th European conference on Machine Learning, (617-624)
  80. Appice A, Ceci M and Malerba D Mining relational association rules for propositional classification Proceedings of the 9th conference on Advances in Artificial Intelligence, (522-534)
  81. Lachiche N Good and bad practices in propositionalisation Proceedings of the 9th conference on Advances in Artificial Intelligence, (50-61)
  82. Basile T, Esposito F, Di Mauro N and Ferilli S Handling continuous-valued attributes in incremental first-order rules learning Proceedings of the 9th conference on Advances in Artificial Intelligence, (430-441)
  83. Ferreira D and Ferreira H Learning, planning, and the life cycle of workflow management Proceedings of the Ninth IEEE International EDOC Enterprise Computing Conference, (39-46)
  84. Ly L, Rinderle S, Dadam P and Reichert M Mining staff assignment rules from event-based data Proceedings of the Third international conference on Business Process Management, (177-190)
  85. ACM
    Liu H, Yin X and Han J An efficient multi-relational Naïve Bayesian classifier based on semantic relationship graph Proceedings of the 4th international workshop on Multi-relational mining, (39-48)
  86. ACM
    Guo H and Viktor H Mining relational databases with multi-view learning Proceedings of the 4th international workshop on Multi-relational mining, (15-24)
  87. ACM
    Ray S and Craven M Supervised versus multiple instance learning Proceedings of the 22nd international conference on Machine learning, (697-704)
  88. ACM
    Kok S and Domingos P Learning the structure of Markov logic networks Proceedings of the 22nd international conference on Machine learning, (441-448)
  89. Zettlemoyer L, Pasula H and Kaelbling L Learning planning rules in noisy stochastic worlds Proceedings of the 20th national conference on Artificial intelligence - Volume 2, (911-918)
  90. Loginov A, Reps T and Sagiv M Abstraction refinement via inductive learning Proceedings of the 17th international conference on Computer Aided Verification, (519-533)
  91. Knobbe A Multi-Relational Data Mining Proceedings of the 2005 conference on Multi-Relational Data Mining, (1-118)
  92. Bauer E and Kókai G Learning from noise data with the help of logic programming systems Proceedings of the 4th WSEAS International Conference on Artificial Intelligence, Knowledge Engineering Data Bases, (1-6)
  93. Badr Y and Chbeir R Automatic image description based on textual data Journal on Data Semantics VII, (196-218)
  94. Driessens K and Džeroski S (2004). Integrating Guidance into Relational Reinforcement Learning, Machine Language, 57:3, (271-304), Online publication date: 1-Dec-2004.
  95. Andrei Ş (2004). Counting for Satisfiability by Inverting Resolution, Artificial Intelligence Review, 22:4, (339-366), Online publication date: 1-Dec-2004.
  96. Pasula H, Zettlemoyer L and Kaelbling L Learning probabilistic relational planning rules Proceedings of the Fourteenth International Conference on International Conference on Automated Planning and Scheduling, (73-81)
  97. Lavrač N, Železný F and Džeroski S Local patterns Proceedings of the 2004 international conference on Local Pattern Detection, (71-88)
  98. Yin X, Han J, Yang J and Yu P CrossMine Proceedings of the 20th International Conference on Data Engineering
  99. Yin X, Han J, Yang J and Yu P CrossMine Proceedings of the 2004 European conference on Constraint-Based Mining and Inductive Databases, (172-195)
  100. King R (2004). Applying Inductive Logic Programming to Predicting Gene Function, AI Magazine, 25:1, (57-68), Online publication date: 1-Mar-2004.
  101. Alphonse é and Matwin S (2004). Filtering Multi-Instance Problems to Reduce Dimensionality in Relational Learning, Journal of Intelligent Information Systems, 22:1, (23-40), Online publication date: 1-Jan-2004.
  102. Appice A, Ceci M, Lanza A, Lisi F and Malerba D (2003). Discovery of spatial association rules in geo-referenced census data: A relational mining approach, Intelligent Data Analysis, 7:6, (541-566), Online publication date: 1-Dec-2003.
  103. ACM
    Džeroski S and De Raedt L (2003). Multi-relational data mining, ACM SIGKDD Explorations Newsletter, 5:1, (100-101), Online publication date: 1-Jul-2003.
  104. ACM
    Džeroski S (2003). Multi-relational data mining, ACM SIGKDD Explorations Newsletter, 5:1, (1-16), Online publication date: 1-Jul-2003.
  105. ACM
    Johnston B and Governatori G Induction of defeasible logic theories in the legal domain Proceedings of the 9th international conference on Artificial intelligence and law, (204-213)
  106. Verbaeten S and Van Assche A Ensemble methods for noise elimination in classification problems Proceedings of the 4th international conference on Multiple classifier systems, (317-325)
  107. Chatpatanasiri R and Kijsirikul B Learning first-order Bayesian networks Proceedings of the 16th Canadian society for computational studies of intelligence conference on Advances in artificial intelligence, (313-328)
  108. Chatpatanasiri R and Kijsirikul B Upgrading ILP rules to first-order Bayesian networks Proceedings of the 7th Pacific-Asia conference on Advances in knowledge discovery and data mining, (595-601)
  109. Fühner T and Kókai G (2003). Incorporating linkage learning into the GeLog framework, Acta Cybernetica, 16:2, (209-228), Online publication date: 2-Jan-2003.
  110. Berthold M and Hand D References Intelligent data analysis, (475-500)
  111. Malerba D (2003). Learning Recursive Theories in the Normal ILP Setting, Fundamenta Informaticae, 57:1, (39-77), Online publication date: 1-Jan-2003.
  112. Džeroski S Relational reinforcement learning for agents in worlds with objects Adaptive agents and multi-agent systems, (306-322)
  113. Thompson C and Mooney R (2003). Acquiring word-meaning mappings for natural language interfaces, Journal of Artificial Intelligence Research, 18:1, (1-44), Online publication date: 1-Jan-2003.
  114. Malerba D (2003). Learning Recursive Theories in the Normal ILP Setting, Fundamenta Informaticae, 57:1, (39-77), Online publication date: 1-Jan-2003.
  115. Džeroski S Learning in rich representations Proceedings of the 12th international conference on Inductive logic programming, (346-349)
  116. Lavrač N, Železny F and Flach P RSD Proceedings of the 12th international conference on Inductive logic programming, (149-165)
  117. Džeroski S Data mining tasks and methods: Rule discovery Handbook of data mining and knowledge discovery, (348-353)
  118. Esposito F, Malerba D and Marengo V (2001). Inductive learning from numerical and symbolic data: An integrated framework, Intelligent Data Analysis, 5:6, (445-461), Online publication date: 1-Dec-2001.
  119. Freitas A (2001). Understanding the Crucial Role of AttributeInteraction in Data Mining, Artificial Intelligence Review, 16:3, (177-199), Online publication date: 22-Nov-2001.
  120. Schmidt D Learning probabilistic relational models Relational Data Mining, (307-333)
  121. Kramer S, Lavrač N and Flach P Propositionalization approaches to relational data mining Relational Data Mining, (262-286)
  122. Kramer S and Widmer G Inducing classification and regression trees in first order logic Relational Data Mining, (140-156)
  123. An introduction to inductive logic programming Relational Data Mining, (48-71)
  124. Dězeroski S Data mining in a nutshell Relational Data Mining, (3-27)
  125. ACM
    Nottelmann H and Fuhr N Learning probabilistic datalog rules for information classification and transformation Proceedings of the tenth international conference on Information and knowledge management, (387-394)
  126. ACM
    Lavrač N and Flach P (2001). An extended transformation approach to inductive logic programming, ACM Transactions on Computational Logic, 2:4, (458-494), Online publication date: 1-Oct-2001.
  127. Kijsirikul B, Sinthupinyo S and Chongkasemwongse K (2001). Approximate Match of Rules Using Backpropagation Neural Networks, Machine Language, 44:3, (273-299), Online publication date: 1-Sep-2001.
  128. Sintek M, Junker M, Van Elst L and Abecker A Using information extraction rules for extending domain ontologies Proceedings of the 2nd International Conference on Ontology Learning - Volume 38, (32-34)
  129. Kazakov D and Manandhar S (2001). Unsupervised Learning of Word Segmentation Rules with Genetic Algorithms and Inductive Logic Programming, Machine Language, 43:1-2, (121-162), Online publication date: 1-Apr-2001.
  130. Džeroski S, De Raedt L and Driessens K (2001). Relational Reinforcement Learning, Machine Language, 43:1-2, (7-52), Online publication date: 1-Apr-2001.
  131. Hernández-Orallo J and José Ramírez-Quintana M (2001). Predictive Software, Automated Software Engineering, 8:2, (139-166), Online publication date: 1-Apr-2001.
  132. Foggia P, Genna R and Vento M (2001). Symbolic vs. Connectionist Learning, IEEE Transactions on Knowledge and Data Engineering, 13:2, (176-195), Online publication date: 1-Mar-2001.
  133. Tang L and Mooney R Automated construction of database interfaces Proceedings of the 2000 Joint SIGDAT conference on Empirical methods in natural language processing and very large corpora: held in conjunction with the 38th Annual Meeting of the Association for Computational Linguistics - Volume 13, (133-141)
  134. Kakas A and Riguzzi F (2000). Abductive concept learning, New Generation Computing, 18:3, (243-294), Online publication date: 1-Sep-2000.
  135. Ohara K, Taka H, Babaguchi N and Kitahashi T Determination of general concept in learning default rules Proceedings of the 6th Pacific Rim international conference on Artificial intelligence, (104-114)
  136. Esposito F, Malerba D and Lisi F (2000). Machine Learning for Intelligent Processing of Printed Documents, Journal of Intelligent Information Systems, 14:2-3, (175-198), Online publication date: 21-Mar-2000.
  137. Botta M and Piola R (2000). Refining Numerical Constants in First Order Logic Theories, Machine Language, 38:1-2, (109-131), Online publication date: 1-Jan-2000.
  138. Lamma E, Riguzzi F and Pereira L (2000). Strategies in Combined Learning via Logic Programs, Machine Language, 38:1-2, (63-87), Online publication date: 1-Jan-2000.
  139. Michalski R (2000). LEARNABLE EVOLUTION MODEL, Machine Language, 38:1-2, (9-40), Online publication date: 1-Jan-2000.
  140. Sebag M and Rouveirol C (2000). Resource-bounded Relational Reasoning, Machine Language, 38:1-2, (41-62), Online publication date: 1-Jan-2000.
  141. Khardon R, Roth D and Valiant L Relational learning for NLP using linear threshold elements Proceedings of the 16th international joint conference on Artificial intelligence - Volume 2, (911-917)
  142. Avila Garcez A and Zaverucha G (1999). The Connectionist Inductive Learning and Logic Programming System, Applied Intelligence, 11:1, (59-77), Online publication date: 1-Jul-1999.
  143. Džeroski S (1999). Editorial, Data Mining and Knowledge Discovery, 3:1, (5-6), Online publication date: 1-Mar-1999.
  144. Srinivasan A and King R (1999). Feature construction with Inductive Logic Programming, Data Mining and Knowledge Discovery, 3:1, (37-57), Online publication date: 1-Mar-1999.
  145. Yamamoto A (1999). Revising the logical foundations of inductive logic programming systems with ground reduced programs, New Generation Computing, 17:1, (119-127), Online publication date: 1-Mar-1999.
  146. Lavrač N, Kononenko I, Keravnou E, Kukar M and Zupan B (1998). Intelligent data analysis for medical diagnosis: using machine learning and temporal abstraction, AI Communications, 11:3,4, (191-218), Online publication date: 1-Dec-1998.
  147. Califf M and Mooney R (1998). Advantages of decision lists and implicit negatives in Inductive Logic Programming, New Generation Computing, 16:3, (263-281), Online publication date: 1-Sep-1998.
  148. Dehaspe L, Toivonen H and King R Finding frequent substructures in chemical compounds Proceedings of the Fourth International Conference on Knowledge Discovery and Data Mining, (30-36)
  149. ACM
    Tsapara I and Turán G Learning atomic formulas with prescribed properties Proceedings of the eleventh annual conference on Computational learning theory, (166-174)
  150. ACM
    Chakrabarti S, Dom B and Indyk P (1998). Enhanced hypertext categorization using hyperlinks, ACM SIGMOD Record, 27:2, (307-318), Online publication date: 1-Jun-1998.
  151. ACM
    Chakrabarti S, Dom B and Indyk P Enhanced hypertext categorization using hyperlinks Proceedings of the 1998 ACM SIGMOD international conference on Management of data, (307-318)
  152. Lavrac N, Gamberger D and Turney P (1998). A Relevancy Filter for Constructive Induction, IEEE Intelligent Systems, 13:2, (50-56), Online publication date: 1-Mar-1998.
  153. Hsu C and Knoblock C (1998). Discovering Robust Knowledge from Databases that Change, Data Mining and Knowledge Discovery, 2:1, (69-95), Online publication date: 31-Jan-1998.
  154. ACM
    Horváth T, Sloan R and Turán G Learning logic programs by using the product homomorphism method Proceedings of the tenth annual conference on Computational learning theory, (10-20)
  155. Morik K and Brockhausen P (1997). A Multistrategy Approach to Relational Knowledge Discovery inDatabases, Machine Language, 27:3, (287-312), Online publication date: 1-Jun-1997.
  156. Sammut C (1997). Using Background Knowledge to Build Multistrategy Learners, Machine Language, 27:3, (241-257), Online publication date: 1-Jun-1997.
  157. Karalič A and Bratko I (1997). First Order Regression, Machine Language, 26:2-3, (147-176), Online publication date: 1-Mar-1997.
  158. De Raedt L and Dehaspe L (1997). Clausal Discovery, Machine Language, 26:2-3, (99-146), Online publication date: 1-Mar-1997.
  159. Langley P, Pfleger K and Sahami M (1997). Lazy Acquisition of Place Knowledge, Artificial Intelligence Review, 11:1-5, (315-342), Online publication date: 1-Feb-1997.
  160. Cohen W Learning trees and rules with set-valued features Proceedings of the thirteenth national conference on Artificial intelligence - Volume 1, (709-716)
  161. Ryu T and Eick C MASSON Proceedings of the 1st annual conference on genetic programming, (200-208)
  162. Wong M and Leung K (1995). Inducing Logic Programs With Genetic Algorithms, IEEE Expert: Intelligent Systems and Their Applications, 10:5, (68-76), Online publication date: 1-Oct-1995.
  163. Wu X and Måhlén P Fuzzy interpretation of induction results Proceedings of the First International Conference on Knowledge Discovery and Data Mining, (325-330)
  164. Hsu C and Knoblock C Estimating the robustness of discovered knowledge Proceedings of the First International Conference on Knowledge Discovery and Data Mining, (156-161)
  165. Lavrač N and De Raedt L (1995). Inductive Logic Programming, AI Communications, 8:1, (3-19), Online publication date: 1-Jan-1995.
  166. Fürnkranz J A comparison of pruning methods for relational concept learning Proceedings of the 3rd International Conference on Knowledge Discovery and Data Mining, (371-382)
  167. Laer W, Dehaspe L and Raedt L Applications of a logical discovery engine Proceedings of the 3rd International Conference on Knowledge Discovery and Data Mining, (263-274)
  168. ACM
    Muggleton S Bayesian inductive logic programming Proceedings of the seventh annual conference on Computational learning theory, (3-11)
  169. ACM
    Kietz J and Džeroski S (1994). Inductive logic programming and learnability, ACM SIGART Bulletin, 5:1, (22-32), Online publication date: 1-Jan-1994.
Contributors
  • Jozef Stefan Institute
  • Jozef Stefan Institute
Please enable JavaScript to view thecomments powered by Disqus.

Recommendations